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Why are we all obsessed with Artificial Intelligence?

#artificialintelligence

In recent days, everyone who has social networks must have seen images generated by the Lensa app, which uses Artificial Intelligence to create personalized avatars. Solutions that generate images through text and even online chats with robots are already part of the daily lives of web builders3. In this brief article, we will bring the main tools that use AI and their possible uses. Artificial Intelligence is a computer system that can learn and make decisions independently, similar to human intelligence. This is possible thanks to complex algorithms and large amounts of data, which allow the AI to constantly learn and adapt. To begin with, the famous MidJourney, which in the words of the tool itself, is an independent research lab exploring new mediums of thought and expanding the imaginative powers of the human species.


The Download: home robot surveillance, and problematic AI text

MIT Technology Review

In the fall of 2020, gig workers in Venezuela posted a series of images to online forums where they gathered to talk shop. The photos were mundane, if sometimes intimate, household scenes captured from low angles--including a particularly revealing shot of a young woman in a lavender T-shirt sitting on the toilet, her shorts pulled down to mid-thigh. The images were not taken by a person, but by development versions of iRobot's Roomba J7 series robot vacuum, the company which Amazon recently acquired for $1.7 billion in a pending deal. They were then sent to Scale AI, a startup that contracts workers around the world to label data used to train artificial intelligence. Earlier this year, MIT Technology Review obtained 15 screenshots of these private photos, which had been posted to closed social media groups.


7 Innovative AI Healthtech Startups to Watch in 2023

#artificialintelligence

Brain-computer interfaces, also known as neural interfaces, allow people to govern and control their surroundings with just their thoughts. AI Healthtech Startups innovation is the result of years of neuro-engineering study into techniques like electroencephalography (EEG), electrocorticography (ECoG), virtual reality (VR), and augmented reality (AR). As Elon Musk's Neuralink shows, interest in neural interfaces is growing as well. Some new businesses are developing non-invasive brain interfaces for people with disabilities, such as those who are paralyzed or have trouble communicating. Indian newcomer StimVeda is creating a non-invasive brain stimulation device called Ease to help those suffering from depression.


Video Segmentation Learning Using Cascade Residual Convolutional Neural Network

arXiv.org Artificial Intelligence

Video segmentation consists of a frame-by-frame selection process of meaningful areas related to foreground moving objects. Some applications include traffic monitoring, human tracking, action recognition, efficient video surveillance, and anomaly detection. In these applications, it is not rare to face challenges such as abrupt changes in weather conditions, illumination issues, shadows, subtle dynamic background motions, and also camouflage effects. In this work, we address such shortcomings by proposing a novel deep learning video segmentation approach that incorporates residual information into the foreground detection learning process. The main goal is to provide a method capable of generating an accurate foreground detection given a grayscale video. Experiments conducted on the Change Detection 2014 and on the private dataset PetrobrasROUTES from Petrobras support the effectiveness of the proposed approach concerning some state-of-the-art video segmentation techniques, with overall F-measures of $\mathbf{0.9535}$ and $\mathbf{0.9636}$ in the Change Detection 2014 and PetrobrasROUTES datasets, respectively. Such a result places the proposed technique amongst the top 3 state-of-the-art video segmentation methods, besides comprising approximately seven times less parameters than its top one counterpart.


A Physics-Informed Neural Network to Model Port Channels

arXiv.org Artificial Intelligence

We describe a Physics-Informed Neural Network (PINN) that simulates the flow induced by the astronomical tide in a synthetic port channel, with dimensions based on the Santos - S\~ao Vicente - Bertioga Estuarine System. PINN models aim to combine the knowledge of physical systems and data-driven machine learning models. This is done by training a neural network to minimize the residuals of the governing equations in sample points. In this work, our flow is governed by the Navier-Stokes equations with some approximations. There are two main novelties in this paper. First, we design our model to assume that the flow is periodic in time, which is not feasible in conventional simulation methods. Second, we evaluate the benefit of resampling the function evaluation points during training, which has a near zero computational cost and has been verified to improve the final model, especially for small batch sizes. Finally, we discuss some limitations of the approximations used in the Navier-Stokes equations regarding the modeling of turbulence and how it interacts with PINNs.


Resonant Anomaly Detection with Multiple Reference Datasets

arXiv.org Artificial Intelligence

An important class of techniques for resonant anomaly detection in high energy physics builds models that can distinguish between reference and target datasets, where only the latter has appreciable signal. Such techniques, including Classification Without Labels (CWoLa) and Simulation Assisted Likelihood-free Anomaly Detection (SALAD) rely on a single reference dataset. They cannot take advantage of commonly-available multiple datasets and thus cannot fully exploit available information. In this work, we propose generalizations of CWoLa and SALAD for settings where multiple reference datasets are available, building on weak supervision techniques. We demonstrate improved performance in a number of settings with realistic and synthetic data. As an added benefit, our generalizations enable us to provide finite-sample guarantees, improving on existing asymptotic analyses.


Geographic and Geopolitical Biases of Language Models

arXiv.org Artificial Intelligence

Pretrained language models (PLMs) often fail to fairly represent target users from certain world regions because of the under-representation of those regions in training datasets. With recent PLMs trained on enormous data sources, quantifying their potential biases is difficult, due to their black-box nature and the sheer scale of the data sources. In this work, we devise an approach to study the geographic bias (and knowledge) present in PLMs, proposing a Geographic-Representation Probing Framework adopting a self-conditioning method coupled with entity-country mappings. Our findings suggest PLMs' representations map surprisingly well to the physical world in terms of country-to-country associations, but this knowledge is unequally shared across languages. Last, we explain how large PLMs despite exhibiting notions of geographical proximity, over-amplify geopolitical favouritism at inference time.


A survey on text generation using generative adversarial networks

arXiv.org Artificial Intelligence

This work presents a thorough review concerning recent studies and text generation advancements using Generative Adversarial Networks. The usage of adversarial learning for text generation is promising as it provides alternatives to generate the so-called "natural" language. Nevertheless, adversarial text generation is not a simple task as its foremost architecture, the Generative Adversarial Networks, were designed to cope with continuous information (image) instead of discrete data (text). Thus, most works are based on three possible options, i.e., Gumbel-Softmax differentiation, Reinforcement Learning, and modified training objectives. All alternatives are reviewed in this survey as they present the most recent approaches for generating text using adversarial-based techniques. The selected works were taken from renowned databases, such as Science Direct, IEEEXplore, Springer, Association for Computing Machinery, and arXiv, whereas each selected work has been critically analyzed and assessed to present its objective, methodology, and experimental results.


Hidden Poison: Machine Unlearning Enables Camouflaged Poisoning Attacks

arXiv.org Artificial Intelligence

We introduce camouflaged data poisoning attacks, a new attack vector that arises in the context of machine unlearning and other settings when model retraining may be induced. An adversary first adds a few carefully crafted points to the training dataset such that the impact on the model's predictions is minimal. The adversary subsequently triggers a request to remove a subset of the introduced points at which point the attack is unleashed and the model's predictions are negatively affected. In particular, we consider clean-label targeted attacks (in which the goal is to cause the model to misclassify a specific test point) on datasets including CIFAR-10, Imagenette, and Imagewoof. This attack is realized by constructing camouflage datapoints that mask the effect of a poisoned dataset.


Contextual-Lexicon Approach for Abusive Language Detection

arXiv.org Artificial Intelligence

Since a lexicon-based approach is more elegant scientifically, explaining the solution components and being easier to generalize to other applications, this paper provides a new approach for offensive language and hate speech detection on social media. Our approach embodies a lexicon of implicit and explicit offensive and swearing expressions annotated with contextual information. Due to the severity of the social media abusive comments in Brazil, and the lack of research in Portuguese, Brazilian Portuguese is the language used to validate the models. Nevertheless, our method may be applied to any other language. The conducted experiments show the effectiveness of the proposed approach, outperforming the current baseline methods for the Portuguese language.